Women and key positions in scientific collaboration networks: analyzing central scientists’ profiles in the artificial intelligence ecosystem through a gender lens
Anahita Hajibabaei,
Andrea Schiffauerova and
Ashkan Ebadi ()
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Anahita Hajibabaei: Concordia University
Andrea Schiffauerova: Concordia University
Ashkan Ebadi: Concordia University
Scientometrics, 2023, vol. 128, issue 2, No 15, 1219-1240
Abstract:
Abstract Scientific collaboration in almost every discipline is mainly driven by the need of sharing knowledge, expertise, and pooled resources. Science is becoming more complex which has encouraged scientists to involve more in collaborative research projects in order to better address the challenges. As a highly interdisciplinary field with a rapidly evolving scientific landscape, artificial intelligence calls for researchers with special profiles covering a diverse set of skills and expertise. Understanding gender aspects of scientific collaboration is of paramount importance, especially in a field such as artificial intelligence that has been attracting large investments. Using social network analysis, natural language processing, and machine learning and focusing on artificial intelligence publications for the period from 2000 to 2019, in this work, we comprehensively investigated the effects of several driving factors on acquiring key positions in scientific collaboration networks through a gender lens. It was found that, regardless of gender, scientific performance in terms of quantity and impact plays a crucial part in possessing the “social researcher” role in the network. However, subtle differences were observed between female and male researchers in acquiring the “local influencer” role.
Keywords: Artificial intelligence; Scientific collaboration; Gender differences; Social network analysis; Centrality metrics; Machine learning (search for similar items in EconPapers)
Date: 2023
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DOI: 10.1007/s11192-022-04601-5
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